9

I'm dealing with server logs which are JSON format, and I want to store my logs on AWS S3 in Parquet format(and Parquet requires an Avro schema). First, all logs have a common set of fields, second, all logs have a lot of optional fields which are not in the common set.

For example, the follwoing are three logs:

{ "ip": "172.18.80.109", "timestamp": "2015-09-17T23:00:18.313Z", "message":"blahblahblah"}
{ "ip": "172.18.80.112", "timestamp": "2015-09-17T23:00:08.297Z", "message":"blahblahblah", "microseconds": 223}
{ "ip": "172.18.80.113", "timestamp": "2015-09-17T23:00:08.299Z", "message":"blahblahblah", "thread":"http-apr-8080-exec-1147"}

All of the three logs have 3 shared fields: ip, timestamp and message, some of the logs have additional fields, such as microseconds and thread.

If I use the following schema then I will lose all additional fields.:

{"namespace": "example.avro",
 "type": "record",
 "name": "Log",
 "fields": [
     {"name": "ip", "type": "string"},
     {"name": "timestamp",  "type": "String"},
     {"name": "message", "type": "string"}
 ]
}

And the following schema works fine:

{"namespace": "example.avro",
 "type": "record",
 "name": "Log",
 "fields": [
     {"name": "ip", "type": "string"},
     {"name": "timestamp",  "type": "String"},
     {"name": "message", "type": "string"},
     {"name": "microseconds", "type": [null,long]},
     {"name": "thread", "type": [null,string]}
 ]
}

But the only problem is that I don't know all the names of optional fields unless I scan all the logs, besides, there will new additional fields in future.

Then I think out an idea that combines record and map:

{"namespace": "example.avro",
 "type": "record",
 "name": "Log",
 "fields": [
     {"name": "ip", "type": "string"},
     {"name": "timestamp",  "type": "String"},
     {"name": "message", "type": "string"},
     {"type": "map", "values": "string"}  // error
 ]
}

Unfortunately this won't compile:

java -jar avro-tools-1.7.7.jar compile schema example.avro .

It will throw out an error:

Exception in thread "main" org.apache.avro.SchemaParseException: No field name: {"type":"map","values":"long"}
    at org.apache.avro.Schema.getRequiredText(Schema.java:1305)
    at org.apache.avro.Schema.parse(Schema.java:1192)
    at org.apache.avro.Schema$Parser.parse(Schema.java:965)
    at org.apache.avro.Schema$Parser.parse(Schema.java:932)
    at org.apache.avro.tool.SpecificCompilerTool.run(SpecificCompilerTool.java:73)
    at org.apache.avro.tool.Main.run(Main.java:84)
    at org.apache.avro.tool.Main.main(Main.java:73)

Is there a way to store JSON strings in Avro format which are flexible to deal with unknown optional fields?

Basically this is a schema evolution problem, Spark can deal with this problem by Schema Merging. I'm seeking a solution with Hadoop.

  • Your map has no name attribute. Give it one. :) – oakad Sep 18 '15 at 0:53
  • I guess you never try avro. It won't work. {"namespace": "example.avro", "type": "record", "name": "Log", "fields": [ {"name": "ip", "type": "string"}, {"name": "timestamp", "type": "string"}, {"name": "message", "type": "string"}, {"name": "addtional", "type": "map", "values": "string"} ] } – soulmachine Sep 18 '15 at 1:22
13

The map type is a "complex" type in avro terminology. The below snippet works:

{"namespace": "example.avro",
 "type": "record",
 "name": "Log",
 "fields": [
   {"name": "ip", "type": "string"},
   {"name": "timestamp",  "type": "string"},
   {"name": "message", "type": "string"},
   {"name": "additional", "type": {"type": "map", "values": "string"}}
  ]
}
  • Thanks! This schema will pass compilation. This schema puts all optional fields in the addtional field, e.g., {"ip": "172.18.80.109", "timestamp": "2015-09-17T23:00:18.313Z", "message": "blah blash", "addtional": {"microseconds": "123", "thread": "http-apr-8080-exec-1147"}}, but I want all optional fields at the same level of the common fields, like the three example logs in my question. – soulmachine Sep 18 '15 at 3:02
  • Record in avro is defined as an object with a fixed number of predefined fields. Alternatively, put your map as top level object and treat all your fields as keys into that map. – oakad Sep 18 '15 at 3:14
  • 1
    If I use map as top-level type, e.g., {"type": "map", "values": "string"}, then all fields have to be string type, if there are different types of fields, then map is helpless. – soulmachine Sep 18 '15 at 18:41
  • You can define your map value type to be a union or named record type containing an union. Avro is quite flexible in this regard. – oakad Sep 19 '15 at 10:41

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